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Novelty detection and segmentation based on Gaussian mixture models: A case study in 3D robotic laser mapping

机译:基于高斯混合模型的新颖性检测和分割:以3D机器人激光测绘为例

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摘要

This article proposes a framework to detect and segment changes in robotics datasets, using 3D robotic mapping as a case study. The problem is very relevant in several application domains, not necessarily related with mobile robotics, including security, health, industry and military applications. The aim is to identify significant changes by comparing current data with previous data provided by sensors. This feature is extremely challenging because large amounts of noisy data must be processed in a feasible way. The proposed framework deals with novelty detection and segmentation in robotic maps using clusters provided by Gaussian Mixture Models (GMMs). GMMs provides a feature space that enables data compression and effective processing. Two alternative criteria to detect changes in the GMM space are compared: a greedy technique based on the Earth Mover's Distance (EMD); and a structural matching algorithm that fulfills both absolute (global matching) and relative constraints (structural matching). The proposed framework is evaluated with real robotic datasets and compared with other methods known from literature. With this purpose, 3D mapping experiments are carried out with both simulated data and real data from a mobile robot equipped with a 3D range sensor.
机译:本文提出了一个框架,该框架使用3D机器人映射作为案例研究来检测和细分机器人数据集中的变化。该问题在几个应用领域中非常相关,而与移动机器人技术(包括安全性,健康,工业和军事应用)不一定相关。目的是通过将当前数据与传感器提供的先前数据进行比较来识别重大变化。此功能极具挑战性,因为必须以可行的方式处理大量的嘈杂数据。所提出的框架使用高斯混合模型(GMM)提供的聚类来处理机器人地图中的新颖性检测和分割。 GMM提供了一个功能空间,可以进行数据压缩和有效处理。比较了检测GMM空间变化的两个替代标准:一种基于地球移动者距离(EMD)的贪婪技术;另一种是基于地球移动者距离的贪婪技术。以及同时满足绝对(全局匹配)和相对约束(结构匹配)的结构匹配算法。所提出的框架是用真实的机器人数据集进行评估的,并与文献中已知的其他方法进行了比较。为此,将对来自配备3D距离传感器的移动机器人的模拟数据和真实数据进行3D映射实验。

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